一个多样本多源的生物识别认证模型

N. Poh, Samy Bengio, J. Korczak
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引用次数: 59

摘要

在本研究中,研究了两种可以改善认证过程的技术:(i)多个样本和(ii)多个生物识别源。我们建议在分数水平上融合来自多个生物特征源的多个样本。通过使用平均算子,理论和实证结果都表明,尽可能多的样本和尽可能多的生物特征源集成可以提高系统的整体可靠性。这种策略被称为多样本多源方法。该策略在一个真实的数据库上进行了测试,使用的是经过一对一配置训练的神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-sample multi-source model for biometric authentication
In this study, two techniques that can improve the authentication process are examined: (i) multiple samples and (ii) multiple biometric sources. We propose the fusion of multiple samples obtained from multiple biometric sources at the score level. By using the average operator, both the theoretical and empirical results show that integrating as many samples and as many biometric sources as possible can improve the overall reliability of the system. This strategy is called the multi-sample multi-source approach. This strategy was tested on a real-life database using neural networks trained in one-versus-all configuration.
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